Abstract:
Large datasets are increasing used to train AI models for addressing social problems, including problems in health. The societal impact of biased AI models has been widely discussed. However, sometimes missing in the conversation is the role of historical policies and injustices in shaping available data and outcomes. Evaluating data and algorithms through a historical lens could be critical for social change.
Chat is not available.